The large-scale charging scheduling problem for fleet batteries: Lagrangian decomposition with time-block reformulations
Preprint, 2025

There is a rise in the need for efficient battery charging methods due to the high penetration of electromobility solutions. Battery swapping, a technique in which fully or partially depleted batteries are exchanged and then transported to a central facility for charging, introduces a unique scheduling problem. For scenarios involving a large number of batteries, commercial solvers and existing methods do not yield optimal or near-optimal solutions in a reasonable time due to high computational complexity. Our study presents a novel approach that combines variable layering with Lagrangian decomposition. We develop a new, tighter time-block reformulation for one of the Lagrangian sub-problems, enhancing convergence rates when used with our partial-variable fixing Lagrangian heuristic. We also propose an ergodic-iterate-based local search method to further improve the solution quality. Lower bounds are improved by learning the relation between Lagrangian multipliers and electricity cost. Our extensive benchmarks show superior computational performance against commercial solvers. We achieved, on average, a 43% lower objective value compared to state-of-the-art methods. In 71% of the instances, we obtained near-optimal solutions (optimality gap less than 6%), and 93% of the instances were below 10%. We obtained feasible solutions for all instances, compared to only 65% feasibility using incumbent methods. The developed exact method aims to support future research on charging scheduling, especially important for micromobility industry, vehicle-to-grid (V2G) applications, and second-life utilization of batteries. Furthermore, the developed polyhedral insights can be useful in other scheduling problems with a common underlying mathematical structure.

Electromobility

Large-scale optimization

Polyhedral analysis

Variable layering

Charging scheduling

Author

Sunney Fotedar

Jiaming Wu

Chalmers, Architecture and Civil Engineering, Geology and Geotechnics

Balázs Adam Kulcsár

Chalmers, Electrical Engineering, Systems and control

Rebecka Jörnsten

Chalmers, Mathematical Sciences, Applied Mathematics and Statistics

FEAT: Fleet management for efficient and sustainable electric micromobility systems

Swedish Energy Agency (P2022-00404), 2022-11-17 -- 2024-12-31.

E-Laas: Energy optimal urban Logistics As A Service

European Commission (EC) (F-ENUAC-2022-0003), 2023-05-01 -- 2025-04-30.

Areas of Advance

Transport

Energy

Subject Categories (SSIF 2025)

Transport Systems and Logistics

Computational Mathematics

Control Engineering

Related datasets

Arxiv [dataset]

URI: https://arxiv.org/abs/2505.07047

More information

Created

5/22/2025